Data-driven transformations in small area estimation
Data-driven transformations in small area estimation
Small area models typically depend on the validity of model assumptions. For example, a commonly used version of the empirical best predictor relies on the Gaussian assumptions of the error terms of the linear mixed regression model: a feature rarely observed in applications with real data. The paper tackles the potential lack of validity of the model assumptions by using data‐driven scaled transformations as opposed to ad hoc chosen transformations. Different types of transformations are explored, the estimation of the transformation parameters is studied in detail under the linear mixed regression model and transformations are used in small area prediction of linear and non‐linear parameters. The use of scaled transformations is crucial as it enables fitting the linear mixed regression model with standard software and hence it simplifies the work of the data analyst. Mean‐squared error estimation that accounts for the uncertainty due to the estimation of the transformation parameters is explored by using the parametric and semiparametric (wild) bootstrap. The methods proposed are illustrated by using real survey and census data for estimating income deprivation parameters for municipalities in the Mexican state of Guerrero. Simulation studies and the results from the application show that using carefully selected, data‐driven transformations can improve small area estimation.
121-148
Rojas-Perilla, N.
9c6204e1-f90e-40ac-a13f-8b98c17b9191
Pannier, S.
c027d902-fdaf-4433-8808-d98f8de57fee
Schmid, T.
f84824b0-082a-4a98-ab8d-6d5be3c6913d
Tzavidis, N.
431ec55d-c147-466d-9c65-0f377b0c1f6a
7 December 2019
Rojas-Perilla, N.
9c6204e1-f90e-40ac-a13f-8b98c17b9191
Pannier, S.
c027d902-fdaf-4433-8808-d98f8de57fee
Schmid, T.
f84824b0-082a-4a98-ab8d-6d5be3c6913d
Tzavidis, N.
431ec55d-c147-466d-9c65-0f377b0c1f6a
Rojas-Perilla, N., Pannier, S., Schmid, T. and Tzavidis, N.
(2019)
Data-driven transformations in small area estimation.
Journal of the Royal Statistical Society. Series A: Statistics in Society, 183 (1), .
(doi:10.1111/rssa.12488).
Abstract
Small area models typically depend on the validity of model assumptions. For example, a commonly used version of the empirical best predictor relies on the Gaussian assumptions of the error terms of the linear mixed regression model: a feature rarely observed in applications with real data. The paper tackles the potential lack of validity of the model assumptions by using data‐driven scaled transformations as opposed to ad hoc chosen transformations. Different types of transformations are explored, the estimation of the transformation parameters is studied in detail under the linear mixed regression model and transformations are used in small area prediction of linear and non‐linear parameters. The use of scaled transformations is crucial as it enables fitting the linear mixed regression model with standard software and hence it simplifies the work of the data analyst. Mean‐squared error estimation that accounts for the uncertainty due to the estimation of the transformation parameters is explored by using the parametric and semiparametric (wild) bootstrap. The methods proposed are illustrated by using real survey and census data for estimating income deprivation parameters for municipalities in the Mexican state of Guerrero. Simulation studies and the results from the application show that using carefully selected, data‐driven transformations can improve small area estimation.
Text
Data-driven Transformations in Small Area Estimation
- Accepted Manuscript
More information
Accepted/In Press date: 24 May 2019
e-pub ahead of print date: 10 July 2019
Published date: 7 December 2019
Identifiers
Local EPrints ID: 431566
URI: http://eprints.soton.ac.uk/id/eprint/431566
ISSN: 0964-1998
PURE UUID: fc228356-0649-4aba-8a70-1ec20e3c0a3e
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Date deposited: 07 Jun 2019 16:30
Last modified: 16 Mar 2024 07:53
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Contributors
Author:
N. Rojas-Perilla
Author:
S. Pannier
Author:
T. Schmid
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